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fix: batch requests to the CreateEmbedding stub #887

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Aug 9, 2024
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27 changes: 19 additions & 8 deletions src/leapfrogai_api/backend/grpc_client.py
Original file line number Diff line number Diff line change
@@ -1,6 +1,6 @@
"""gRPC client for OpenAI models."""

from typing import Iterator, AsyncGenerator, Any
from typing import Iterator, AsyncGenerator, Any, List
import grpc
from fastapi.responses import StreamingResponse
import leapfrogai_sdk as lfai
Expand Down Expand Up @@ -120,14 +120,25 @@ async def create_embeddings(model: Model, request: lfai.EmbeddingRequest):
"""Create embeddings using the specified model."""
async with grpc.aio.insecure_channel(model.backend) as channel:
stub = lfai.EmbeddingsServiceStub(channel)
e: lfai.EmbeddingResponse = await stub.CreateEmbedding(request)
embeddings: List[EmbeddingResponseData] = []

# Loop through inputs - 500 at a time
for i in range(0, len(request.inputs), 500):
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request_embeddings = request.inputs[i : i + 500]

range_request = lfai.EmbeddingRequest(inputs=request_embeddings)
e: lfai.EmbeddingResponse = await stub.CreateEmbedding(range_request)
if e and e.embeddings is not None:
data = [
EmbeddingResponseData(
embedding=list(e.embeddings[i].embedding), index=i
)
for i in range(len(e.embeddings))
]
embeddings.extend(data)

return CreateEmbeddingResponse(
data=[
EmbeddingResponseData(
embedding=list(e.embeddings[i].embedding), index=i
)
for i in range(len(e.embeddings))
],
data=embeddings,
model=model.name,
usage=Usage(prompt_tokens=0, total_tokens=0),
)
Expand Down